A novel multi-pose face recognition via robust SIFT feature

Xinao-Bing Xian, Huajuan Wu, Mingxi Zhang, Jin-Long Zhang, Xv-Sheng Zhan
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引用次数: 4

Abstract

The performance of face recognition algorithm significantly degrades when the pose of probe face is different from gallery face, especially when the angular difference between them is larger than 45°. One of the possible solutions is that not only using frontal face but combining frontal and profile face images as gallery images. According to this idea, this paper proposes a simple, efficient robust SIFT feature method, which generates the face feature database (FFD) with multi-pose face images. The feature vectors are extracted from multiple poses of each person's face by using SIFT algorithm. Then, by computing the dot product of each feature vector with all others, the robust features which constitute the FFD could be identified. Meanwhile, in the proposed scheme, the importance of features is considered by assigning different weights, which improves accuracy. Experimental results on the PEI and the CMU PIE database demonstrate the effectiveness of the proposed method.
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一种基于鲁棒SIFT特征的多姿态人脸识别方法
当探测面姿态与通道面姿态不同时,尤其是两者的角度差大于45°时,人脸识别算法的性能会显著下降。一种可能的解决方案是不仅使用正面图像,而且将正面和侧面图像结合起来作为图库图像。基于这一思想,本文提出了一种简单、高效、鲁棒的SIFT特征方法,利用多姿态人脸图像生成人脸特征库(FFD)。利用SIFT算法从人脸的多个姿态中提取特征向量。然后,通过计算每个特征向量与所有其他特征向量的点积,可以识别构成FFD的鲁棒特征。同时,通过分配不同的权重来考虑特征的重要性,提高了准确率。在PEI和CMU PIE数据库上的实验结果表明了该方法的有效性。
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